首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Design of a fault detection and diagnose system for intelligent unmanned aerial vehicle navigation system
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Design of a fault detection and diagnose system for intelligent unmanned aerial vehicle navigation system

机译:智能无人空中飞行器导航系统故障检测与诊断系统设计

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摘要

A secure control system is of great importance for unmanned aerial vehicles, especially in the condition of fault data injection. As the source of the feedback control system, the Inertial navigation system/Global position system (INS/GPS) is the premise of flight control system security. However, unmanned aerial vehicles have the requirement of lightweight and low cost for airborne equipment, which makes redundant device object unrealistic. Therefore, the method of fault detection and diagnosis is desperately needed. In this paper, a fault detection and diagnosis method based on fuzzy system and neural network is proposed. Fuzzy system does not depend on the mathematical model of the process, which overcomes the difficulties in obtaining the accurate model of unmanned aerial vehicles. Neural network has a strong self-learning ability, which could be used to optimize the membership function of fuzzy system. This paper is structured as follows: first, a Kalman filter observer is introduced to calculate the residual sequences caused by different sensor faults. Then, the sequences are transmitted to the fault detection and diagnosis system and fault type can be obtained. The proposed fault detection and diagnosis algorithm was implemented and evaluated with real datasets, and the results demonstrate that the proposed method can detect the sensor faults successfully with high levels of accuracy and efficiency.
机译:安全控制系统对于无人驾驶飞行器非常重要,特别是在故障数据注入的条件下。作为反馈控制系统的来源,惯性导航系统/全球位置系统(INS / GPS)是飞行控制系统安全的前提。然而,无人驾驶航空公司对空降设备的重量轻和低成本,这使得冗余设备对象不切实际。因此,迫切需要故障检测和诊断方法。本文提出了一种基于模糊系统和神经网络的故障检测和诊断方法。模糊系统不依赖于该过程的数学模型,从而克服了获得无人驾驶飞行器准确模型的困难。神经网络具有很强的自学习能力,可用于优化模糊系统的成员函数。本文的结构如下:首先,引入了卡尔曼滤波器观察者以计算由不同传感器故障引起的残余序列。然后,将序列传输到故障检测,并且可以获得诊断系统和故障类型。使用实际数据集实现和评估所提出的故障检测和诊断算法,结果表明,该方法可以成功地检测传感器故障,具有高水平的精度和效率。

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